In the field of disparities research, there has been growing interest in developing a counterfactual-based decomposition analysis to identify underlying mediating mechanisms that help reduce disparities in populations. Despite rapid development in the area, most prior studies have been limited to regression-based methods, undermining the possibility of addressing complex models with multiple mediators and/or heterogeneous effects. We propose an estimation method that effectively addresses complex models. Moreover, we develop a novel sensitivity analysis for possible violations of identification assumptions. The proposed method and sensitivity analysis are demonstrated with data from the Midlife Development in the US study to investigate the degree to which disparities in cardiovascular health at the intersection of race and gender would be reduced if the distributions of education and perceived discrimination were the same across intersectional groups.
翻译:在差异研究领域,人们越来越有兴趣进行反事实分解分析,以确定有助于减少人口差异的基本调解机制。尽管该领域发展迅速,但先前的研究大多限于倒退方法,削弱了处理具有多重调解人和(或)多种影响复杂模型的可能性。我们提出了有效处理复杂模型的估算方法。此外,我们还对可能违反识别假设的情况进行了新颖的敏感性分析。拟议的方法和敏感性分析与美国研究《中生活发展》的数据进行了示范,该研究旨在调查如果教育分布和感觉的歧视在交叉群体之间相同,那么在种族和性别交汇点上心血管健康的差异将缩小到什么程度。